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Article
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An R Package for Bayesian analysis of multi-environment and multi-trait multi-environment data for genome-based prediction 

Montesinos-Lopez, O.A.; Montesinos-Lopez, A.; Luna-Vazquez, F.J.; Toledo, F.H.; Perez-Rodriguez, P.; Lillemo, M.; Crossa, J. (Genetics Society of America, 2019)
Evidence that genomic selection (GS) is a technology that is revolutionizing plant breeding continues to grow. However, it is very well documented that its success strongly depends on statistical models, which are used by ...
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New deep learning genomic-based prediction model for multiple traits with binary, ordinal, and continuous phenotypes 

Montesinos-Lopez, O.A.; Martin-Vallejo, J.; Crossa, J.; Gianola, D.; Hernández Suárez, C.M.; Montesinos-López, A.; Juliana, P.; Singh, R.P. (Genetics Society of America, 2019)
Multiple-trait experiments with mixed phenotypes (binary, ordinal and continuous) are not rare in animal and plant breeding programs. However, there is a lack of statistical models that can exploit the correlation between ...
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A benchmarking between deep learning, support vector machine and bayesian threshold best linear unbiased prediction for predicting ordinal traits in plant breeding 

Montesinos-Lopez, O.A.; Martin-Vallejo, J.; Crossa, J.; Gianola, D.; Hernández Suárez, C.M.; Montesinos-Lopez, A.; Juliana, P.; Singh, R.P. (Genetics Society of America, 2019)
Genomic selection is revolutionizing plant breeding. However, still lacking are better statistical models for ordinal phenotypes to improve the accuracy of the selection of candidate genotypes. For this reason, in this ...

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Author
Crossa, J. (3)Montesinos-Lopez, O.A. (3)Montesinos-López, A. (3)Gianola, D. (2)Juliana, P. (2)Martin Vallejo, F.J. (2)Singh, R.P. (2)Hernandez-Suarez, C.M. (1)Hernández Suárez, C.M. (1)Lillemo, M. (1)... View More
Date Issued
2019 (3)
Type
Article (3)
Agrovoc
BAYESIAN THEORY (2)GENOMICS (2)PLANT BREEDING (2)ARTIFICIAL SELECTION (1)CROP FORECASTING (1)DATA ANALYSIS (1)MACHINE LEARNING (1)MULTIVARIATE ANALYSIS (1)PHENOTYPES (1)STATISTICAL METHODS (1)... View More
Keywords
Genomic Prediction (3)
GenPred (3)
Shared Data Resources (3)Deep Learning (2)Genomic Selection (2)Genome Based Prediction and Selection (1)Mixed Phenotypes (Binary Ordinal and Continuous) (1)Multi-Environment (1)Multi-Trait (1)Multiple-Trait (1)... View More


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